AnchorViz

Author:

Suh Jina1ORCID,Ghorashi Soroush1,Ramos Gonzalo1,Chen Nan-Chen2ORCID,Drucker Steven1,Verwey Johan1,Simard Patrice1

Affiliation:

1. Microsoft Research, Redmond, WA, Washington

2. University of Washington, Seattle, WA, Washington

Abstract

When building a classifier in interactive machine learning (iML), human knowledge about the target class can be a powerful reference to make the classifier robust to unseen items. The main challenge lies in finding unlabeled items that can either help discover or refine concepts for which the current classifier has no corresponding features (i.e., it has feature blindness ). Yet it is unrealistic to ask humans to come up with an exhaustive list of items, especially for rare concepts that are hard to recall. This article presents AnchorViz , an interactive visualization that facilitates the discovery of prediction errors and previously unseen concepts through human-driven semantic data exploration. By creating example-based or dictionary-based anchors representing concepts, users create a topology that (a) spreads data based on their similarity to the concepts and (b) surfaces the prediction and label inconsistencies between data points that are semantically related. Once such inconsistencies and errors are discovered, users can encode the new information as labels or features and interact with the retrained classifier to validate their actions in an iterative loop. We evaluated AnchorViz through two user studies. Our results show that AnchorViz helps users discover more prediction errors than stratified random and uncertainty sampling methods. Furthermore, during the beginning stages of a training task, an iML tool with AnchorViz can help users build classifiers comparable to the ones built with the same tool with uncertainty sampling and keyword search, but with fewer labels and more generalizable features. We discuss exploration strategies observed during the two studies and how AnchorViz supports discovering, labeling, and refining of concepts through a sensemaking loop.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Human-Computer Interaction

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. VA + Embeddings STAR: A State‐of‐the‐Art Report on the Use of Embeddings in Visual Analytics;Computer Graphics Forum;2023-06

2. ESCAPE: Countering Systematic Errors from Machine’s Blind Spots via Interactive Visual Analysis;Proceedings of the 2023 CHI Conference on Human Factors in Computing Systems;2023-04-19

3. Human-in-the-loop machine learning: a state of the art;Artificial Intelligence Review;2022-08-17

4. A classification and review of tools for developing and interacting with machine learning systems;Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing;2022-04-25

5. Toward User-Driven Sound Recognizer Personalization with People Who Are d/Deaf or Hard of Hearing;Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies;2021-06-23

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